|
|
Monitoring and diagnosis of complex production process based on free energy of Gaussian–Bernoulli restricted Boltzmann machine |
Qian-qian Dong1, Qing-ting Qian1, Min Li1, Gang Xu1 |
1 Collaborative Innovation Center of Steel Technology, University of Science and Technology Beijing, Beijing 100083, China |
|
|
Abstract Online monitoring and diagnosis of production processes face great challenges due to the nonlinearity and multivariate of complex industrial processes. Traditional process monitoring methods employ kernel function or multilayer neural networks to solve the nonlinear mapping problem of data. However, the above methods increase the model complexity and are not interpretable, leading to difficulties in subsequent fault recognition/diagnosis/location. A process monitoring and diagnosis method based on the free energy of Gaussian–Bernoulli restricted Boltzmann machine (GBRBM-FE) was proposed. Firstly, a GBRBM network was established to make the probability distribution of the reconstructed data as close as possible to the probability distribution of the raw data. On this basis, the weights and biases in GBRBM network were used to construct F statistics, which represents the free energy of the sample. The smaller the energy of the sample is, the more normal the sample is. Therefore, F statistics can be used to monitor the production process. To diagnose fault variables, the F statistic for each sample was decomposed to obtain the Fv statistic for each variable. By analyzing the deviation degree between the corresponding variables of abnormal samples and normal samples, the cause of process abnormalities can be accurately located. The application of converter steelmaking process demonstrates that the proposed method outperforms the traditional methods, in terms of fault monitoring and diagnosis performance.
|
|
|
|
|
Cite this article: |
Qian-qian Dong,Qing-ting Qian,Min Li, et al. Monitoring and diagnosis of complex production process based on free energy of Gaussian–Bernoulli restricted Boltzmann machine[J]. Journal of Iron and Steel Research International, 2023, 30(05): 971-984.
|
|
|
|
[1] |
Jie SHI,Jun HU,,Chang WANG,Cun-yu WANG,Han DONG,Wen-quan CAO. Ultrafine Grained Duplex Structure Developed by ART-annealing in Cold Rolled Medium-Mn Steels[J]. Chinese Journal of Iron and Steel, 2014, 21(2): 208-214. |
[2] |
LIU Li-mei,WANG An-na,SHA Mo,ZHAO Feng-yun. Multi-Class Classification Methods of Cost-Conscious LS-SVM for Fault Diagnosis of Blast Furnace[J]. Chinese Journal of Iron and Steel, 2011, 18(10): 17-23. |
[3] |
LI Guoyou;DONG Min. A Wavelet and Neural Networks Based on Fault Diagnosis for HAGC System of Strip Rolling Mill[J]. Chinese Journal of Iron and Steel, 2011, 18(1): 31-31. |
|
|
|
|